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Accurate prediction of the viscosity of light crude oils using one-parameter friction theory: Effect of crude oil characterization methods and property correlations

机译:使用单参数摩擦理论精确预测光原油粘度:原油表征方法和性质相关的影响

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摘要

The one-parameter friction theory framework using the Peng-Robinson equation of state (PR FT) (QuinonesCisneros et al., Fluid Phase Equilibria, 2001) is applied for the viscosity modeling of light, crude oils. Three different methods have been implemented to characterize and determine the composition of these fluids: SARA-based method using the Perturbed-Chain Statistical Association Fluid Theory (PC-SAFT) EoS (Punnapala and Vargas, Fuel, 2013), SARA-based method using the PR EoS (Abutaqiya et al., Energy & Fuels, 2020), and Single Carbon Number (SCN) method using the PR EoS (Pedersen and Christensen, Taylor & Francis Group, 2007). Both SARA-based methods use the Saturates-Aromatics-Resins-Asphaltenes (SARA) content analysis. Additionally, two different property correlation sets have been used with each characterization method to estimate the critical properties of the generated pseudo-components: Evangelista and Vargas (EV) correlations (Evangelista and Vargas, Fluid Phase Equilibria, 2018) and Pedersen correlations (Pedersen and Christensen, Taylor & Francis Group, 2007). The predictive capabilities of the different modeling schemes are tested against experimental viscosity data for 10 light crude oils from the Middle East after fitting the friction theory parameters to a single viscosity data point at saturation condition. A systematic comparison of the characterization methods revealed that the SARA-based methods with either EoS predict viscosity with higher accuracy (below 5% AAPD) than the SCN method (above 5% AAPD), irrespective of the correlations used. Despite using the relatively simpler PR EoS with SARA-based method, the viscosity predictions are as good as the predictions obtained using the highly advanced PC-SAFT EoS.
机译:使用彭罗宾逊(PR FT)(Quinonescisneros等,流体相平,2001)的单参数摩擦理论框架用于光,原油的粘度建模。已经实施了三种不同的方法来表征和确定这些流体的组成:基于培育的方法使用扰动链统计关联流体理论(PC-SAFT)EOS(Punnapala和Vargas,2013),使用SARA的方法PR EOS(Abutaqiya等,能量和燃料,2020)和使用PR EOS(Pedersen和Christensen,Taylor&Francis Group,2007)的单碳数(SCN)方法。基于SARA的方法都使用饱和芳烃 - 树脂 - 沥青质(SARA)含量分析。另外,两种不同的性质相关组已经与每个表征方法一起使用,以估计所生成的伪组分的关键特性:Evangelista和Vargas(EV)相关性(Evangelista和Vargas,流体相平衡,2018)和扒手相关性(Pedersen和Christensen,Taylor&Francis Group,2007年)。在将摩擦理论参数拟合到饱和条件下的单一粘度数据点之后,对不同建模方案的预测能力进行了测试,以获得来自中东的10个光原油。表征方法的系统比较揭示了具有比SCN方法(高于5%AAPD)的精度(低于5%AAPD)的eOS的基于SARA的方法,而不管使用的相关性。尽管使用了基于SARA的方法使用相对简单的PR EOS,但粘度预测与使用高级PC-SAFT EOS获得的预测一样好。

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